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Gaining insights into winning football strategies using machine learning | AWS Machine Learning Blog
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football.json 2019/20 Update - Free open public domain football data in JSON incl. English Premier League, Bundesliga, Primera División, Serie A and more - No API key required ;-) : r/datasets
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Neil Currie on Twitter: "footballdata3 isn't quite the same as a normal tibble/data.frame. That's because R hasn't pulled the data in yet. This keeps things fast. To pull it in we use
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